Department of Statistical Genetics, Osaka University Graduate School of Medicine, 2-2, Yamadaoka, Suita-shi, Osaka, 565-0871, Japan.
Laboratory for Systems Genetics, RIKEN Center for Integrative Medical Sciences, 1-7-22, Suehiro-cho, Tsurumi-ku, Yokohama City, Kanagawa, 230-0045, Japan.
J Hum Genet. 2024 Oct;69(10):481-486. doi: 10.1038/s10038-023-01213-6. Epub 2024 Jan 15.
The imputation of unmeasured genotypes is essential in human genetic research, particularly in enhancing the power of genome-wide association studies and conducting subsequent fine-mapping. Recently, several deep learning-based genotype imputation methods for genome-wide variants with the capability of learning complex linkage disequilibrium patterns have been developed. Additionally, deep learning-based imputation has been applied to a distinct genomic region known as the major histocompatibility complex, referred to as HLA imputation. Despite their various advantages, the current deep learning-based genotype imputation methods do have certain limitations and have not yet become standard. These limitations include the modest accuracy improvement over statistical and conventional machine learning-based methods. However, their benefits include other aspects, such as their "reference-free" nature, which ensures complete privacy protection, and their higher computational efficiency. Furthermore, the continuing evolution of deep learning technologies is expected to contribute to further improvements in prediction accuracy and usability in the future.
在人类遗传研究中,未测量基因型的推断是必不可少的,特别是在提高全基因组关联研究的效力和进行后续精细映射方面。最近,已经开发了几种基于深度学习的全基因组变体基因型推断方法,这些方法能够学习复杂的连锁不平衡模式。此外,基于深度学习的推断方法已经应用于一个独特的基因组区域,称为主要组织相容性复合体,即 HLA 推断。尽管这些方法具有多种优势,但目前的基于深度学习的基因型推断方法确实存在一些局限性,尚未成为标准。这些局限性包括与统计和传统基于机器学习的方法相比,准确性的适度提高。然而,它们的优势还包括其他方面,例如“无参考”的性质,这确保了完全的隐私保护,以及更高的计算效率。此外,深度学习技术的不断发展预计将有助于未来进一步提高预测准确性和可用性。